arXiv Open Access 2026

Vision-Language Controlled Deep Unfolding for Joint Medical Image Restoration and Segmentation

Ping Chen Zicheng Huang Xiangming Wang Yungeng Liu Bingyu Liang +2 lainnya
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Abstrak

We propose VL-DUN, a principled framework for joint All-in-One Medical Image Restoration and Segmentation (AiOMIRS) that bridges the gap between low-level signal recovery and high-level semantic understanding. While standard pipelines treat these tasks in isolation, our core insight is that they are fundamentally synergistic: restoration provides clean anatomical structures to improve segmentation, while semantic priors regularize the restoration process. VL-DUN resolves the sub-optimality of sequential processing through two primary innovations. (1) We formulate AiOMIRS as a unified optimization problem, deriving an interpretable joint unfolding mechanism where restoration and segmentation are mathematically coupled for mutual refinement. (2) We introduce a frequency-aware Mamba mechanism to capture long-range dependencies for global segmentation while preserving the high-frequency textures necessary for restoration. This allows for efficient global context modeling with linear complexity, effectively mitigating the spectral bias of standard architectures. As a pioneering work in the AiOMIRS task, VL-DUN establishes a new state-of-the-art across multi-modal benchmarks, improving PSNR by 0.92 dB and the Dice coefficient by 9.76\%. Our results demonstrate that joint collaborative learning offers a superior, more robust solution for complex clinical workflows compared to isolated task processing. The codes are provided in https://github.com/cipi666/VLDUN.

Topik & Kata Kunci

Penulis (7)

P

Ping Chen

Z

Zicheng Huang

X

Xiangming Wang

Y

Yungeng Liu

B

Bingyu Liang

H

Haijin Zeng

Y

Yongyong Chen

Format Sitasi

Chen, P., Huang, Z., Wang, X., Liu, Y., Liang, B., Zeng, H. et al. (2026). Vision-Language Controlled Deep Unfolding for Joint Medical Image Restoration and Segmentation. https://arxiv.org/abs/2601.23103

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓